Survival Analysis Revisited: Understanding and Unifying Poisson, Exponential, and Cox Models in Fall Risk Analysis
Journal:
arXiv
Published Date:
Jan 6, 2025
Abstract
This paper explores foundational and applied aspects of survival analysis,
using fall risk assessment as a case study. It revisits key time-related
probability distributions and statistical methods, including logistic
regression, Poisson regression, Exponential regression, and the Cox
Proportional Hazards model, offering a unified perspective on their
relationships within the survival analysis framework. A contribution of this
work is the step-by-step derivation and clarification of the relationships
among these models, particularly demonstrating that Poisson regression in the
survival context is a specific case of the Cox model. These insights address
gaps in understanding and reinforce the simplicity and interpretability of
survival models. The paper also emphasizes the practical utility of survival
analysis by connecting theoretical insights with real-world applications. In
the context of fall detection, it demonstrates how these models can
simultaneously predict fall risk, analyze contributing factors, and estimate
time-to-event outcomes within a single streamlined framework. In contrast,
advanced deep learning methods often require complex post-hoc interpretation
and separate training for different tasks particularly when working with
structured numerical data. This highlights the enduring relevance of classical
statistical frameworks and makes survival models especially valuable in
healthcare settings, where explainability and robustness are critical. By
unifying foundational concepts and offering a cohesive perspective on
time-to-event analysis, this work serves as an accessible resource for
understanding survival models and applying them effectively to diverse
analytical challenges.